Merging pharmacometabolomics with pharmacogenomics using '1000 Genomes' single-nucleotide polymorphism imputation: Selective serotonin reuptake inhibitor response pharmacogenomics

Ryan Abo, Scott Hebbring, Yuan Ji, Hongjie Zhu, Zhao Bang Zeng, Anthony Batzler, Gregory D. Jenkins, Joanna Biernacka, Karen Snyder, Maureen Drews, Oliver Fiehn, Brooke Fridley, Daniel Schaid, Naoyuki Kamatani, Yusuke Nakamura, Michiaki Kubo, Taisei Mushiroda, Rima Kaddurah-Daouk, David A. Mrazek, Richard M. Weinshilboum

Research output: Contribution to journalArticlepeer-review

46 Scopus citations

Abstract

OBJECTIVE: We set out to test the hypothesis that pharmacometabolomic data could be efficiently merged with pharmacogenomic data by single-nucleotide polymorphism (SNP) imputation of metabolomic-derived pathway data on a 'scaffolding' of genome-wide association (GWAS) SNP data to broaden and accelerate 'pharmacometabolomics-informed pharmacogenomic' studies by eliminating the need for initial genotyping and by making broader SNP association testing possible. METHODS: We previously genotyped 131 tag SNPs for six genes encoding enzymes in the glycine synthesis and degradation pathway using DNA from 529 depressed patients treated with citalopram/escitalopram to pursue a glycine metabolomics 'signal' associated with selective serotonine reuptake inhibitor response. We identified a significant SNP in the glycine dehydrogenase gene. Subsequently, GWAS SNP data were generated for the same patients. In this study, we compared SNP imputation within 200 kb of these same six genes with the results of the previous tag SNP strategy as a rapid strategy for merging pharmacometabolomic and pharmacogenomic data. RESULTS: Imputed genotype data provided greater coverage and higher resolution than did tag SNP genotyping, with a higher average genotype concordance between genotyped and imputed SNP data for '1000 Genomes' (96.4%) than HapMap 2 (93.2%) imputation. Many low P-value SNPs with novel locations within genes were observed for imputed compared with tag SNPs, thus altering the focus for subsequent functional genomic studies. CONCLUSION: These results indicate that the use of GWAS data to impute SNPs for genes in pathways identified by other 'omics' approaches makes it possible to rapidly and cost efficiently identify SNP markers to 'broaden' and accelerate pharmacogenomic studies.

Original languageEnglish (US)
Pages (from-to)247-253
Number of pages7
JournalPharmacogenetics and genomics
Volume22
Issue number4
DOIs
StatePublished - Apr 2012

Keywords

  • 1000 Genomes
  • HapMap
  • imputation
  • major depressive disorder
  • pharmacogenomics
  • pharmacometabolomics
  • selective serotonin reuptake inhibitors
  • tag single-nucleotide polymorphisms

ASJC Scopus subject areas

  • Genetics(clinical)
  • General Pharmacology, Toxicology and Pharmaceutics
  • Genetics
  • Molecular Medicine
  • Molecular Biology

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